EXPERT SYSTEM FOR DIAGNOSIS OF MALARIA AND TYPHOID

Abba Hamman Maidabara, A. S. Ahmadu, Y. M. Malgwi, Douglas Ibrahim
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引用次数: 3

Abstract

An expert system is a computer program designed to solve problems in a domain that has human expertise. The knowledge built into the system is usually obtained from experts in the field. Based on this knowledge, an expert system can replicate the thinking process of the human experts and make logical deductions accordingly. Malaria and Typhoid are major health challenge in our society today (Nigeria), its symptoms can lead to other illness which include prolonged fever, fatigue, headaches, nausea, abdominal pain and constipation or diarrhea. People in endemic areas are at risk of contracting both infections concurrently. According to the world malaria report 2011, there were about 216 million cases of malaria and typhoid and estimated 655,000 deaths in 2010. (WHO report, 2011). The main challenging issue confronting the healthcare is lack of quality of service at minimal cost implying from diagnosing to predicting patients correctly. This issue can sometimes lead to an unfortunate clinical decision that can result in devastating consequences that are unacceptable. Although many studies were carried out by different researchers in the medical domain using various data techniques. In this research work, an efficient expert system that diagnoses patients with malaria and typhoid was developed. A secondary data was collected from university of Maiduguri teaching hospital for the period of four years which ranges from 2017 to 2020. The work explored the potential benefits of proposing a new model for prediction and diagnosis of malaria and typhoid using symptoms. The model adopted the Naive bayes and was implemented using the python. The system diagnoses a patient in real time (within 30 minutes) without necessarily visiting the laboratory for a test. Three algorithms were used these are, Support vector machine, Artificial neural network and Naïve bayes. From our finding, it is observed that Naïve bayes and support vector machine give the best result which is 100% in terms of accuracy of diagnosis. Keywords: Diagnosis, Prediction, Expert System, Typhoid, Malaria
疟疾和伤寒诊断专家系统
专家系统是一种计算机程序,旨在解决具有人类专业知识的领域中的问题。系统内置的知识通常是从该领域的专家那里获得的。基于这些知识,专家系统可以复制人类专家的思维过程并进行相应的逻辑推理。疟疾和伤寒是我们当今社会的主要健康挑战(尼日利亚),其症状可导致其他疾病,包括长期发烧、疲劳、头痛、恶心、腹痛、便秘或腹泻。流行地区的人们有同时感染这两种感染的风险。根据《2011年世界疟疾报告》,2010年约有2.16亿疟疾和伤寒病例,估计有65.5万人死亡。(世卫组织报告,2011年)。医疗保健面临的主要挑战是缺乏以最低成本提供高质量的服务,这意味着从诊断到正确预测患者。这个问题有时会导致一个不幸的临床决定,从而导致不可接受的毁灭性后果。尽管医学领域的不同研究人员使用各种数据技术进行了许多研究。本研究开发了一套高效的疟疾、伤寒诊断专家系统。二级数据是从迈杜古里大学教学医院收集的,为期四年,从2017年到2020年。这项工作探讨了提出一种利用症状预测和诊断疟疾和伤寒的新模型的潜在好处。该模型采用朴素贝叶斯,并使用python实现。该系统可以实时(在30分钟内)诊断患者,而不必去实验室进行测试。使用了三种算法,分别是支持向量机,人工神经网络和Naïve贝叶斯。从我们的发现来看,Naïve贝叶斯和支持向量机给出了最好的结果,在诊断准确率方面是100%。关键词:诊断,预测,专家系统,伤寒,疟疾
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